/* Copyright 2017 The TensorFlow Authors. All Rights Reserved.

Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at

    http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.
==============================================================================*/

package org.tensorflow.lite;

import java.io.File;
import java.nio.ByteBuffer;
import java.nio.MappedByteBuffer;
import java.util.HashMap;
import java.util.Map;
import org.checkerframework.checker.nullness.qual.NonNull;

/**
 * Driver class to drive model inference with TensorFlow Lite.
 *
 * <p>A {@code Interpreter} encapsulates a pre-trained TensorFlow Lite model, in which operations
 * are executed for model inference.
 *
 * <p>For example, if a model takes only one input and returns only one output:
 *
 * <pre>{@code
 * try (Interpreter interpreter = new Interpreter(file_of_a_tensorflowlite_model)) {
 *   interpreter.run(input, output);
 * }
 * }</pre>
 *
 * <p>If a model takes multiple inputs or outputs:
 *
 * <pre>{@code
 * Object[] inputs = {input0, input1, ...};
 * Map<Integer, Object> map_of_indices_to_outputs = new HashMap<>();
 * float[][][] ith_output = new float[3][2][4];
 * map_of_indices_to_outputs.put(i, ith_output);
 * try (Interpreter interpreter = new Interpreter(file_of_a_tensorflowlite_model)) {
 *   interpreter.runForMultipleInputsOutputs(inputs, map_of_indices_to_outputs);
 * }
 * }</pre>
 *
 * <p>Orders of inputs and outputs are determined when converting TensorFlow model to TensorFlowLite
 * model with Toco.
 *
 * <p><b>WARNING:</b>Instances of a {@code Interpreter} is <b>not</b> thread-safe. A {@code
 * Interpreter} owns resources that <b>must</b> be explicitly freed by invoking {@link #close()}
 */
public final class Interpreter implements AutoCloseable {

  /**
   * Initializes a {@code Interpreter}
   *
   * @param modelFile: a File of a pre-trained TF Lite model.
   */
  public Interpreter(@NonNull File modelFile) {
    if (modelFile == null) {
      return;
    }
    wrapper = new NativeInterpreterWrapper(modelFile.getAbsolutePath());
  }

  /**
   * Initializes a {@code Interpreter} and specifies the number of threads used for inference.
   *
   * @param modelFile: a file of a pre-trained TF Lite model
   * @param numThreads: number of threads to use for inference
   */
  public Interpreter(@NonNull File modelFile, int numThreads) {
    if (modelFile == null) {
      return;
    }
    wrapper = new NativeInterpreterWrapper(modelFile.getAbsolutePath(), numThreads);
  }

  /**
   * Initializes a {@code Interpreter} with a {@code ByteBuffer} of a model file.
   *
   * <p>The ByteBuffer should not be modified after the construction of a {@code Interpreter}. The
   * {@code ByteBuffer} can be either a {@code MappedByteBuffer} that memory-maps a model file, or a
   * direct {@code ByteBuffer} of nativeOrder() that contains the bytes content of a model.
   */
  public Interpreter(@NonNull ByteBuffer byteBuffer) {
    wrapper = new NativeInterpreterWrapper(byteBuffer);
  }

  /**
   * Initializes a {@code Interpreter} with a {@code ByteBuffer} of a model file and specifies the
   * number of threads used for inference.
   *
   * <p>The ByteBuffer should not be modified after the construction of a {@code Interpreter}. The
   * {@code ByteBuffer} can be either a {@code MappedByteBuffer} that memory-maps a model file, or a
   * direct {@code ByteBuffer} of nativeOrder() that contains the bytes content of a model.
   */
  public Interpreter(@NonNull ByteBuffer byteBuffer, int numThreads) {
    wrapper = new NativeInterpreterWrapper(byteBuffer, numThreads);
  }

  /**
   * Initializes a {@code Interpreter} with a {@code MappedByteBuffer} to the model file.
   *
   * <p>The {@code MappedByteBuffer} should remain unchanged after the construction of a {@code
   * Interpreter}.
   */
  public Interpreter(@NonNull MappedByteBuffer mappedByteBuffer) {
    wrapper = new NativeInterpreterWrapper(mappedByteBuffer);
  }

  /**
   * Initializes a {@code Interpreter} with a {@code MappedByteBuffer} to the model file and
   * specifies the number of threads used for inference.
   *
   * <p>The {@code MappedByteBuffer} should remain unchanged after the construction of a {@code
   * Interpreter}.
   */
  public Interpreter(@NonNull MappedByteBuffer mappedByteBuffer, int numThreads) {
    wrapper = new NativeInterpreterWrapper(mappedByteBuffer, numThreads);
  }

  /**
   * Runs model inference if the model takes only one input, and provides only one output.
   *
   * <p>Warning: The API runs much faster if {@link ByteBuffer} is used as input data type. Please
   * consider using {@link ByteBuffer} to feed input data for better performance.
   *
   * @param input an array or multidimensional array, or a {@link ByteBuffer} of primitive types
   *     including int, float, long, and byte. {@link ByteBuffer} is the preferred way to pass large
   *     input data. When {@link ByteBuffer} is used, its content should remain unchanged until
   *     model inference is done.
   * @param output a multidimensional array of output data, or a {@link ByteBuffer} of primitive
   *     types including int, float, long, and byte.
   */
  public void run(@NonNull Object input, @NonNull Object output) {
    Object[] inputs = {input};
    Map<Integer, Object> outputs = new HashMap<>();
    outputs.put(0, output);
    runForMultipleInputsOutputs(inputs, outputs);
  }

  /**
   * Runs model inference if the model takes multiple inputs, or returns multiple outputs.
   *
   * <p>Warning: The API runs much faster if {@link ByteBuffer} is used as input data type. Please
   * consider using {@link ByteBuffer} to feed input data for better performance.
   *
   * @param inputs an array of input data. The inputs should be in the same order as inputs of the
   *     model. Each input can be an array or multidimensional array, or a {@link ByteBuffer} of
   *     primitive types including int, float, long, and byte. {@link ByteBuffer} is the preferred
   *     way to pass large input data. When {@link ByteBuffer} is used, its content should remain
   *     unchanged until model inference is done.
   * @param outputs a map mapping output indices to multidimensional arrays of output data or {@link
   *     ByteBuffer}s of primitive types including int, float, long, and byte. It only needs to keep
   *     entries for the outputs to be used.
   */
  public void runForMultipleInputsOutputs(
      @NonNull Object[] inputs, @NonNull Map<Integer, Object> outputs) {
    checkNotClosed();
    wrapper.run(inputs, outputs);
  }

  /**
   * Resizes idx-th input of the native model to the given dims.
   *
   * <p>IllegalArgumentException will be thrown if it fails to resize.
   */
  public void resizeInput(int idx, @NonNull int[] dims) {
    checkNotClosed();
    wrapper.resizeInput(idx, dims);
  }

  /** Gets the number of input tensors. */
  public int getInputTensorCount() {
    checkNotClosed();
    return wrapper.getInputTensorCount();
  }

  /**
   * Gets index of an input given the op name of the input.
   *
   * <p>IllegalArgumentException will be thrown if the op name does not exist in the model file used
   * to initialize the {@link Interpreter}.
   */
  public int getInputIndex(String opName) {
    checkNotClosed();
    return wrapper.getInputIndex(opName);
  }

  /**
   * Gets the Tensor associated with the provdied input index.
   *
   * <p>IllegalArgumentException will be thrown if the provided index is invalid.
   */
  public Tensor getInputTensor(int inputIndex) {
    checkNotClosed();
    return wrapper.getInputTensor(inputIndex);
  }

  /** Gets the number of output Tensors. */
  public int getOutputTensorCount() {
    checkNotClosed();
    return wrapper.getOutputTensorCount();
  }

  /**
   * Gets index of an output given the op name of the output.
   *
   * <p>IllegalArgumentException will be thrown if the op name does not exist in the model file used
   * to initialize the {@link Interpreter}.
   */
  public int getOutputIndex(String opName) {
    checkNotClosed();
    return wrapper.getOutputIndex(opName);
  }

  /**
   * Gets the Tensor associated with the provdied output index.
   *
   * <p>IllegalArgumentException will be thrown if the provided index is invalid.
   */
  public Tensor getOutputTensor(int outputIndex) {
    checkNotClosed();
    return wrapper.getOutputTensor(outputIndex);
  }

  /**
   * Returns native inference timing.
   * <p>IllegalArgumentException will be thrown if the model is not initialized by the
   * {@link Interpreter}.
   */
  public Long getLastNativeInferenceDurationNanoseconds() {
    checkNotClosed();
    return wrapper.getLastNativeInferenceDurationNanoseconds();
  }

  /** Turns on/off Android NNAPI for hardware acceleration when it is available. */
  public void setUseNNAPI(boolean useNNAPI) {
    checkNotClosed();
    wrapper.setUseNNAPI(useNNAPI);
  }

  public void setNumThreads(int numThreads) {
    checkNotClosed();
    wrapper.setNumThreads(numThreads);
  }

  /** Release resources associated with the {@code Interpreter}. */
  @Override
  public void close() {
    if (wrapper != null) {
      wrapper.close();
      wrapper = null;
    }
  }

  @Override
  protected void finalize() throws Throwable {
    try {
      close();
    } finally {
      super.finalize();
    }
  }

  private void checkNotClosed() {
    if (wrapper == null) {
      throw new IllegalStateException("Internal error: The Interpreter has already been closed.");
    }
  }

  NativeInterpreterWrapper wrapper;
}
